Featured in Architecture & Design

Monal Daxini presents a blueprint for streaming data architectures and a review of desirable features of a streaming engine. He also talks about streaming application patterns and anti-patterns, and use cases and concrete examples using Apache Flink.

Featured in AI, ML & Data Engineering

Joy Gao talks about how database streaming is essential to WePay's infrastructure and the many functions that database streaming serves. She provides information on how the database streaming infrastructure was created & managed so that others can leverage their work to develop their own database streaming solutions. She goes over challenges faced with streaming peer-to-peer distributed databases.

Top Application Lifecycle Management (ALM) Toolsets

InfoQ's research widget has been deprecated and is no longer available.

In the recent past there has been a sudden upsurge in the number of competing Application lifecycle management (ALM) offerings from vendors that previously offered a subset of the toolset. This research item aims to help you determine the ability to execute and completeness of vision of each of these competing toolsets.

This is an initial set but please share with us any additional tool suites we should include for future versions of the survey.

SwiftALM - Rich set of features

Your message is awaiting moderation. Thank you for participating in the discussion.

SwiftALM from Digite provides the most comprehensive end to end Application Lifecycle Management solution for an organization. Rich set of features with wide integration capability and flexible pricing makes SwiftALM the most worthy product among various ALM tools. Please visit www.digite.com to learn more about ALM and Kanban products.

Great list

Your message is awaiting moderation. Thank you for participating in the discussion.

Your users might also find real user reviews for many of these ALM solutions on IT Central Station to be helpful.

As an example, this user writes in his review of HPE ALM, "The advantage is that we can test applications before they go to production, and as long as we're testing in a production-sized environment, we have a pretty good idea how an application will perform in production." You can read the rest of his review here: goo.gl/JePhea